Low‐rank latent matrix‐factor prediction modeling for generalized high‐dimensional matrix‐variate regression

Author:

Zhang Yuzhe1,Zhang Xu2,Zhang Hong1,Liu Aiyi3ORCID,Liu Catherine C.4ORCID

Affiliation:

1. School of Management University of Science and Technology of China Hefei Anhui China

2. School of Mathematical Sciences South China Normal University Guangzhou Guangdong China

3. National Institute of Child Health and Human Development National Institutes of Health Bethesda Maryland USA

4. Department of Applied Mathematics The Hong Kong Polytechnic University Hung Hom Hong Kong SAR

Abstract

Motivated by diagnosing the COVID‐19 disease using two‐dimensional (2D) image biomarkers from computed tomography (CT) scans, we propose a novel latent matrix‐factor regression model to predict responses that may come from an exponential distribution family, where covariates include high‐dimensional matrix‐variate biomarkers. A latent generalized matrix regression (LaGMaR) is formulated, where the latent predictor is a low‐dimensional matrix factor score extracted from the low‐rank signal of the matrix variate through a cutting‐edge matrix factor model. Unlike the general spirit of penalizing vectorization plus the necessity of tuning parameters in the literature, instead, our prediction modeling in LaGMaR conducts dimension reduction that respects the geometric characteristic of intrinsic 2D structure of the matrix covariate and thus avoids iteration. This greatly relieves the computation burden, and meanwhile maintains structural information so that the latent matrix factor feature can perfectly replace the intractable matrix‐variate owing to high‐dimensionality. The estimation procedure of LaGMaR is subtly derived by transforming the bilinear form matrix factor model onto a high‐dimensional vector factor model, so that the method of principle components can be applied. We establish bilinear‐form consistency of the estimated matrix coefficient of the latent predictor and consistency of prediction. The proposed approach can be implemented conveniently. Through simulation experiments, the prediction capability of LaGMaR is shown to outperform some existing penalized methods under diverse scenarios of generalized matrix regressions. Through the application to a real COVID‐19 dataset, the proposed approach is shown to predict efficiently the COVID‐19.

Funder

National Natural Science Foundation of China

Research Grants Council, University Grants Committee

Publisher

Wiley

Subject

Statistics and Probability,Epidemiology

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Modeling and Learning on High-Dimensional Matrix-Variate Sequences;Journal of the American Statistical Association;2024-05-24

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